Ga Tech Institute for Data Engineering and Science

Summary

IDEAS: The new home of big data research and solutions
Recognizing the importance of big data and high-performance computing, Georgia Tech led the development of the new Coda complex, a 21-story building with an 80,000 square foot data center. IDEaS is an anchor tenant of the new building, built in Georgia Tech’s Technology Square in Midtown Atlanta. Coda’s design facilitates collaboration between researchers in various disciplines, which accelerates the transition of the computing industry from its computer-centric roots to its data-centric future. This endeavor entails the restructuring of the modern computing ecosystem centered on the secure and timely acquisition, distillation, storage, modeling, and analysis of data in driving decisions in all sectors of the economy.
Coda Website

Source: Website

OnAir Post: Ga Tech Institute for Data Engineering and Science

About

Research Overview

Big Data

Data Science is an interdisciplinary field that is concerned with systems, storage, software, algorithms, and applications for extracting knowledge or insights from data. Data-driven research is also commonplace in many fields of sciences and engineering, where direct observations (astronomy), instrumentation (sensors, DNA sequencers, electron microscopes), or simulations, (molecular dynamics trajectories), generate datasets that must be analyzed with domain-specific knowledge. Recently, our ability to collect and store massive datasets that are typically characterized by high volume, velocity, or variety, and inadequacy of current techniques to handle such large data sizes, led to the coining of the term “Big Data.”

IDEAS Research Areas

Machine Learning

Underpins the transformation of data to knowledge to actionable insights. Research in unstructured and dynamic data, deep learning, data mining, and interactive machine learning advances foundations and big data applications in many domains.

High Performance Computing

Critical technology for big data analysis. High performance systems, middleware, algorithms, applications, software, and frameworks support data-driven computing at all levels.

Algorithms and Optimization

Algorithms, optimization, and statistics are laying the foundations for large-scale data analysis. Streaming and sublinear algorithms, sampling and sketching techniques, high-dimensional analysis are enabling big data analytics.

Health and Life Sciences

Big data sets abound in genomics, systems biology, and proteomics. Advances in electronic medical records, computational phenotyping, personalized genomics, and precision medicine are driving predictive, preventive, and personalized healthcare.

Materials and Manufacturing

Large-scale data sets providing a microscopic view of materials, and scalable modeling and simulation technologies, are paving the way for accelerated development of new materials.

Energy Infrastructure

Advances in sensors and the Internet of Things enable energy infrastructure monitoring. Data analytics brings unparalleled efficiencies to energy production, transmission, distribution, and utilization.

Smart Cities

Achieving efficient use of resources and services, safety, affordability, and a higher quality of life using data-based research. Internet of Things research uses big data and analytics from massive streams of real-time data and applies it to smart city initiatives.

Source: Website

Web Links

Discuss

OnAir membership is required to make comments and add content.
Contact this post’s lead Curator/Moderator, onAir Curators.

For more information, see our
DE Curation & Moderation Guidelines post. 

This is an open discussion on the contents of this post.

Home Forums Open Discussion

Viewing 1 post (of 1 total)
Viewing 1 post (of 1 total)
  • You must be logged in to reply to this topic.
Skip to toolbar